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Complexity reduction and interpretability improvement for fuzzy rule systems based on simple interpretability measures and indices by bi-objective evolutionary rule selection

机译:基于双目标进化规则选择的基于简单可解释性度量和指标的模糊规则系统复杂度降低和可解释性改进

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摘要

The aim of this paper is to develop a general post-processing methodology to reduce the complexity of data-driven linguistic fuzzy models, in order to reach simpler fuzzy models preserving enough accuracy and better fuzzy linguistic performance with respect to their initial values. This post-processing approach is based on rule selection via the formulation of a bi-objective problem with one objective focusing on accuracy and the other on interpretability. The latter is defined via the aggregation of several interpretability measures, based on the concepts of similarity and complexity of fuzzy systems and rules. In this way, a measure of the fuzzy model interpretability is given. Two neuro-fuzzy systems for providing initial fuzzy models, Fuzzy Adaptive System ART based and Neuro-Fuzzy Function Approximation and several case studies, data sets from KEEL Project Repository, are used to check this approach. Both fuzzy and neuro-fuzzy systems generate Mamdani-type fuzzy rule-based systems, each with its own particularities and complexities from the point of view of the fuzzy sets and the rule generation. Based on these systems and data sets, several fuzzy models are generated to check the performance of the proposal under different restrictions of complexity and fuzziness.
机译:本文的目的是开发一种通用的后处理方法,以降低数据驱动的语言模糊模型的复杂性,从而获得更简单的模糊模型,并在其初始值上保持足够的准确性和更好的模糊语言性能。这种后处理方法基于规则选择,通过制定双目标问题,其中一个目标侧重于准确性,另一个目标侧重于可解释性。后者是基于模糊系统和规则的相似性和复杂性的概念,通过汇总几种可解释性度量来定义的。通过这种方式,给出了模糊模型可解释性的度量。两个用于提供初始模糊模型的神经模糊系统(基于模糊自适应系统ART和神经模糊函数逼近)以及一些案例研究(来自KEEL Project Repository的数据集)用于检查该方法。模糊和神经模糊系统都生成基于Mamdani类型的基于模糊规则的系统,从模糊集和规则生成的角度来看,每个系统都有其自身的特殊性和复杂性。基于这些系统和数据集,生成了多个模糊模型以检查提案在复杂性和模糊性的不同限制下的性能。

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